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3D卷积自动编码网络的高光谱异常检测
引用本文:王盛铭,王涛,唐圣金,苏延召.3D卷积自动编码网络的高光谱异常检测[J].光谱学与光谱分析,2022,42(4):1270-1277.
作者姓名:王盛铭  王涛  唐圣金  苏延召
作者单位:1. 火箭军工程大学作战保障学院,陕西 西安 710025
2. 火箭军工程大学导弹工程学院,陕西 西安 710025
基金项目:国家自然科学基金项目(61873175),国家自然科学基金青年科学基金项目(61703410)资助;
摘    要:高光谱图像包含丰富的地物光谱信息,在遥感图像领域有着巨大的发展前景.高光谱图像异常检测无需任何先验光谱信息,便可检测出图像中的异常目标.因此,在国防军事和民用领域都有广泛的应用,是现阶段高光谱图像处理领域的研究热点.然而,高光谱图像存在数据复杂、冗余性强、未标记以及样本数量少等特点,这给高光谱图像异常检测带来了很大的挑...

关 键 词:高光谱  异常检测  3D卷积  自动编码器  马氏距离
收稿时间:2021-03-13

Hyperspectral Anomaly Detection Based on 3D Convolutional Autoencoder Network
WANG Sheng-ming,WANG Tao,TANG Sheng-jin,SU Yan-zhao.Hyperspectral Anomaly Detection Based on 3D Convolutional Autoencoder Network[J].Spectroscopy and Spectral Analysis,2022,42(4):1270-1277.
Authors:WANG Sheng-ming  WANG Tao  TANG Sheng-jin  SU Yan-zhao
Institution:1. Combat Support Academy,Rocket Force University of Engineering, Xi’an 710025, China 2. Missile Engineering Academy, Rocket Force University of Engineering, Xi’an 710025, China
Abstract:Hyperspectral images contain abundant spectral information of ground objects and have great development prospects in the field of remote sensing images. Anomaly detection of hyperspectral images can detect abnormal targets in images without any prior spectral information. Therefore, it is widely used in national, military, and civil fields, and it is a research hotspot in hyperspectral image processing at present. However, hyperspectral images are characterized by complex data, strong redundancy, unlabeled and small number of samples, which brings great challenges to anomaly detection of hyperspectral images. Especially in deep learning, large image data is often needed as training samples, which is difficult to obtain hyperspectral images. Aiming at the problems that most existing algorithms are not adaptive to hyperspectral images and lack of space-spectral information utilization, a hyperspectral anomaly detection algorithm based on 3D convolution autoencoder network is proposed, which can effectively utilize hyperspectral image information, learn more discriminative feature expression, and improve detection accuracy under the premise of a small amount of training data. Firstly, the 3D convolution network is designed through 3D convolution, 3D pooling and 3D normalization, and then the spatial-spectral structure features of hyperspectral images are extracted. Then, the 3D convolution network and the 3D deconvolution network are embedded into the auto and decoder of the autoencoder network, respectively. background reconstruction is carried out by minimizing the reconstruction error combining the mean square error and the spectral angular distance. Finally, the Mahalanobis distance between the original hyperspectral image and the reconstructed background image is used for anomaly detection. This algorithm can automatically train all parameters in the network without prior information, learn the effective features of hyperspectral images and carry out background reconstruction in an unsupervised way. It is performed using the nine images from three sets of real high spectral data sets and is compared with the five algorithms of RX, SRX, CRD, UNRS, and LRASR. The experimental results show that this algorithm maintains a high detection effect and accuracy in the context of high spectrum images compared to existing algorithms.
Keywords:Hyperspectral  Anomaly detection  3D convolution  Autoencoder  Mahalanobis distance  
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